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Comparative study of embedding methods.

C J Cellucci1, A M Albano, P E Rapp

  • 1Department of Physics, Ursinus College, Collegeville, Pennsylvania 19426, USA.

Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics
|October 26, 2005
PubMed
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Determining optimal embedding parameters for time series analysis requires more than just the data itself. Global false nearest neighbors and mutual information best identified embedding dimension and lag, respectively, in this study.

Area of Science:

  • Dynamical systems analysis
  • Time series analysis
  • Nonlinear dynamics

Background:

  • Embedding experimental data is a critical first step in dynamical analysis.
  • Selecting appropriate embedding parameters (dimension and lag) is essential for successful analysis.
  • Criteria solely based on the time series itself may not determine optimal embedding.

Purpose of the Study:

  • To assess methods for determining optimal embedding parameters for time series.
  • To compare analytical results with time series analysis for validation.
  • To evaluate the robustness of embedding criteria to noise.

Main Methods:

  • Analysis of systems with explicit analytic representations.
  • Comparison of analytical results with time series embedding.

Related Experiment Videos

  • Assessment using global false nearest neighbors for dimension.
  • Assessment using mutual information for lag.
  • Main Results:

    • Optimal embedding parameters cannot be solely determined from the time series.
    • Global false nearest neighbors effectively identified the embedding dimension.
    • Mutual information function successfully identified the optimal lag value.
    • Robustness to noise was considered in the assessment.

    Conclusions:

    • For the considered examples, global false nearest neighbors is recommended for embedding dimension.
    • Mutual information is recommended for identifying the optimal lag value in time series.
    • Limitations of the study are explicitly stated, emphasizing the context of the findings.